Mitigating the Effect of Obstacles in Narrowband Ultrasonic Localization Systems

Sebastian Haigh, J. Kulon, A. Partlow, P. Rogers, C. Gibson
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引用次数: 1

Abstract

This paper develops a method for mitigating the negative effects of obstacles in narrowband, time division multiple access (TDMA), ultrasonic localization systems. The method builds upon the robust Bayesian classifier for ultrasonic localization (RoBCUL) algorithm which utilizes an iteratively reweighted least squares (IRLS) scheme. This algorithm has the advantage of low computational cost but loses performance in the presence of obstacles. The improved version of the RoBCUL algorithm presented in this paper uses a statistical test applied after each iteration of the regression, using a weighted residual vector calculated from the weight matrix and residual vector. The technique was tested using experimental data with its performance being quantified by its ability to correctly classify all the signals received during a single TDMA cycle. The extended version performed significantly better in all obstacle scenarios than the original, correctly classifying 100% of TDMA cycles in the scenarios with no obstacles, 97.6% with one obstacle, and 89.0% with two obstacles.
减小窄带超声定位系统中障碍物的影响
本文提出了一种在窄带时分多址(TDMA)超声定位系统中减轻障碍物负面影响的方法。该方法建立在鲁棒贝叶斯超声定位分类器(RoBCUL)算法的基础上,该算法采用迭代加权最小二乘(IRLS)方案。该算法具有计算成本低的优点,但在存在障碍物时性能会下降。本文提出的改进版本的RoBCUL算法在每次回归迭代后进行统计检验,使用由权矩阵和残差向量计算的加权残差向量。该技术使用实验数据进行了测试,其性能通过其在单个TDMA周期内正确分类接收到的所有信号的能力来量化。扩展版本在所有障碍场景下的表现都明显优于原始版本,在无障碍场景下,TDMA循环的正确率为100%,在有一个障碍场景下为97.6%,在有两个障碍场景下为89.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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